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Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/3431
Title: Time Line Correlative Spectral Processing for Stratification of Blood Pressure using Adaptive Signal Conditioning
Authors: Shinde, Santosh
RajaRajeswari, Pothuraju
Keywords: Stratification of blood pressure
discrete wavelet transform
spectral coding
selective correlative approach
Issue Date: 5-Jul-2021
Abstract: â€”Stratification of Blood Pressure is essential input in most of the cardiovascular diseases detection and prediction and is also a great aid to medical practitioners in dealing with Hypertension. Denoising based on spectral coding is developed based on frequency spectral decomposition and a spectral correlative approach based on wavelet transform. The existing approaches perform a standard deviation and mean of peak correlation in signal conditioning. The artifact filtrations were developed based on thresholding. Filtration of coefficients has an impact on accuracy of estimation and hence proper signal conditioning is a primal need. Wherein threshold is measured with discrete monitoring, time line observation could improve the accuracy of filtration efficiency under varying interference condition. Dynamic interference due to capturing or processing source results in jitter type noises which are short period deviations with varying frequency component. Hence a time frequency analysis for filtration is adapted for filtration. This paper presents an approach of spectral correlation approach for signal condition in stratification of blood pressure under cuff less monitoring. This presented approach operates on the spectral distribution of finer resolution bands for monitoring signal in denoising and decision making. Existing approaches lacks the capability of loss-less denoising which is efficiently worked out in this paper.
URI: http://192.168.3.232:8080/jspui/handle/123456789/3431
Appears in Collections:Computer

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